2018
DOI: 10.12688/f1000research.15591.1
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Revealing HIV viral load patterns using unsupervised machine learning and cluster summarization

Abstract: HIV RNA viral load (VL) is an important outcome variable in studies of HIV infected persons. There exists only a handful of methods which classify patients by VL patterns. Most methods place limits on the use of viral load measurements, are often specific to a particular study design, and do not account for complex, temporal variation. To address this issue, we propose a set of four unambiguous computable characteristics (features) of time-varying HIV viral load patterns, along with a novel centroid-based clas… Show more

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